机器人群中的协同姿态估计:框架、仿真和实验结果

Siwei Zhang, Kimon Cokona, R. Pöhlmann, E. Staudinger, T. Wiedemann, A. Dammann
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引用次数: 3

摘要

由于能够同时在不同位置观察并避免单点故障,群机器人在外星探索和灾害管理等应用中获得了越来越多的关注。为了自主操作,成群的机器人需要知道它们的精确姿势,包括它们的位置、速度和方向。当像全球导航卫星系统(GNSS)这样的外部导航基础设施不是无处不在时,机器人群需要依靠内部测量来估计它们的姿势。在本文中,我们基于从室外群体导航实验中获得的传感器特性的见解,提出了一种协同三维姿态估计框架。分散式粒子滤波器(DPF)通过融合基于无线电的测距、惯性传感器数据、控制命令和邻居的姿态估计,对每个机器人进行估计。该框架集成在德国航空航天中心(DLR)开发的群导航生态系统中,并统一用于模拟和实验。
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Cooperative Pose Estimation in a Robotic Swarm: Framework, Simulation and Experimental Results
Swarm robotics has gained an increasing attention in applications like extraterrestrial exploration and disaster management, due to the ability of simultaneously observing at different locations and avoiding a single point of failure. In order to operate autonomously, robots in a swarm need to know their precise poses, including their positions, velocities and orientations. When external navigation infrastructures like the global navigation satellite systems (GNSS) are not ubiquitously accessible, the swarm of robots need to rely on internal measurements to estimate their poses. In this paper, we propose a cooperative 3D pose estimation framework, based on the insights of sensor characteristics that we gained from outdoor swarm navigation experiments. A decentralized particle filter (DPF) operates on each robot to estimate its pose via fusing radio-based ranging, inertial sensor data, control commands and the pose estimates of its neighbors. This framework is integrated in the swarm navigation ecosystem developed at the German Aerospace Center (DLR), and is unified for both simulations and experiments.
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